the Creative Commons Attribution 3.0 License.
the Creative Commons Attribution 3.0 License.
The Atmospheric Chemistry and Climate Model Intercomparison Project (ACCMIP): overview and description of models, simulations and climate diagnostics
J.-F. Lamarque
D. T. Shindell
B. Josse
P. J. Young
I. Cionni
V. Eyring
D. Bergmann
P. Cameron-Smith
W. J. Collins
R. Doherty
S. Dalsoren
G. Faluvegi
G. Folberth
S. J. Ghan
L. W. Horowitz
Y. H. Lee
I. A. MacKenzie
T. Nagashima
V. Naik
D. Plummer
S. T. Rumbold
M. Schulz
R. B. Skeie
D. S. Stevenson
S. Strode
A. Voulgarakis
G. Zeng
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